A two-stage random forest method for short-term load forecasting

Xiaoyu Wu, Jinghan He, T. Yip, Pei Zhang
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引用次数: 4

Abstract

Machine learning methods are the main stream algorithms applied in short term load forecasting. However, typical machine learning methods consisting of Artificial Neural Network (ANN) and Support Vector Regression (SVR) have deficiencies hard to overcome, such as easy to be trapped in local optimization (for ANN) or hard to decide kernel parameter and penalty parameter (for SVR). On the other hand, grey relational analysis is an effective method to select proper historical data as training set for training machine learning models. But it is not comprehensive and accurate enough. In this paper, a new two-stage hybrid algorithm aimed to solve these two problems is proposed. Random Forest (RF) method is introduced as the machine learning method, which will not cause overfitting problem and parameters are easy to be tuned. Furthermore, Grey Relational Projection (GRP) is introduced to select similar historical data to train random forest models. The final forecasting results based on real load data prove this new two-stage method performs better than the other two common methods.
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短期负荷预测的两阶段随机森林方法
机器学习方法是短期负荷预测的主流算法。然而,典型的由人工神经网络(ANN)和支持向量回归(SVR)组成的机器学习方法存在难以克服的缺点,如容易陷入局部优化(对于ANN)或难以确定核参数和惩罚参数(对于SVR)。另一方面,灰色关联分析是一种选择合适的历史数据作为训练集来训练机器学习模型的有效方法。但它还不够全面和准确。针对这两个问题,本文提出了一种新的两阶段混合算法。引入随机森林(Random Forest, RF)方法作为机器学习方法,该方法不会产生过拟合问题,且参数易于调整。在此基础上,引入灰色关联投影(GRP)方法,选取相似的历史数据进行随机森林模型的训练。最后基于实际负荷数据的预测结果表明,该方法优于其他两种常用方法。
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